A deep learning approach for the velocity field prediction in a scramjet isolator
Published 2021 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
A deep learning approach for the velocity field prediction in a scramjet isolator
Authors
Keywords
-
Journal
PHYSICS OF FLUIDS
Volume 33, Issue 2, Pages 026103
Publisher
AIP Publishing
Online
2021-02-25
DOI
10.1063/5.0039537
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Deep learning methods for super-resolution reconstruction of turbulent flows
- (2020) Bo Liu et al. PHYSICS OF FLUIDS
- Flowfield Reconstruction and Shock Train Leading Edge Detection in Scramjet Isolators
- (2020) Chen Kong et al. AIAA JOURNAL
- Isolator characteristics under steady and oscillatory back pressures
- (2020) Saravanan R. et al. PHYSICS OF FLUIDS
- Propagation of shock-wave/boundary-layer interaction unsteadiness in attached and separated flows
- (2020) Ziao Wang et al. AIP Advances
- Shock train behavior affected by continuous Mach number variation of incoming flow
- (2020) Wenxin Hou et al. ACTA ASTRONAUTICA
- On the unsteady throttling dynamics and scaling analysis in a typical hypersonic inlet–isolator flow
- (2020) K. Raja Sekar et al. PHYSICS OF FLUIDS
- Machine learning methods for turbulence modeling in subsonic flows around airfoils
- (2019) Linyang Zhu et al. PHYSICS OF FLUIDS
- Super-resolution reconstruction of turbulent flows with machine learning
- (2019) Kai Fukami et al. JOURNAL OF FLUID MECHANICS
- Fast flow field prediction over airfoils using deep learning approach
- (2019) Vinothkumar Sekar et al. PHYSICS OF FLUIDS
- Flame Interaction Characteristics in Scramjet Combustor Equipped with Strut/Wall Combined Fuel Injectors
- (2019) Junlong Zhang et al. COMBUSTION SCIENCE AND TECHNOLOGY
- A deep learning enabler for nonintrusive reduced order modeling of fluid flows
- (2019) S. Pawar et al. PHYSICS OF FLUIDS
- Inversion and reconstruction of supersonic cascade passage flow field based on a model comprising transposed network and residual network
- (2019) Yunfei Li et al. PHYSICS OF FLUIDS
- Prediction model of velocity field around circular cylinder over various Reynolds numbers by fusion convolutional neural networks based on pressure on the cylinder
- (2018) Xiaowei Jin et al. PHYSICS OF FLUIDS
- Oscillation of the shock train in an isolator with incident shocks
- (2018) Nan Li et al. PHYSICS OF FLUIDS
- Mathematical Model of Shock-Train Path with Complex Background Waves
- (2017) Nan Li et al. JOURNAL OF PROPULSION AND POWER
- Measurements of parameters of transient gas flows by a diode laser absorption spectroscopy at elevated pressures and temperatures
- (2017) M. A. Bolshov et al. OPTICS AND SPECTROSCOPY
- Mechanism and Prediction for Occurrence of Shock-Train Sharp Forward Movement
- (2016) Kejing Xu et al. AIAA JOURNAL
- Reynolds averaged turbulence modelling using deep neural networks with embedded invariance
- (2016) Julia Ling et al. JOURNAL OF FLUID MECHANICS
- Unstart Margin Characterization Method of Scramjet Considering Isolator–Combustor Interactions
- (2015) Bin Qin et al. AIAA JOURNAL
- Closed-Loop Turbulence Control: Progress and Challenges
- (2015) Steven L. Brunton et al. Applied Mechanics Reviews
- Deep learning
- (2015) Yann LeCun et al. NATURE
- Investigation on flows in a supersonic isolator with an adjustable cowl convergence angle
- (2013) Chen Zhi et al. EXPERIMENTAL THERMAL AND FLUID SCIENCE
- Supersonic Mass-Flux Measurements via Tunable Diode Laser Absorption and Nonuniform Flow Modeling
- (2012) Leyen S. Chang et al. AIAA JOURNAL
- Large-Eddy Simulation of a Supersonic Inlet-Isolator
- (2012) Heeseok Koo et al. AIAA JOURNAL
- Behavior of shock trains in a hypersonic inlet/isolator model with complex background waves
- (2012) H. J. Tan et al. EXPERIMENTS IN FLUIDS
- Recent advances in the measurement of strongly radiating, turbulent reacting flows
- (2011) G.J. Nathan et al. PROGRESS IN ENERGY AND COMBUSTION SCIENCE
- Fast image/video upsampling
- (2008) Qi Shan et al. ACM TRANSACTIONS ON GRAPHICS
Add your recorded webinar
Do you already have a recorded webinar? Grow your audience and get more views by easily listing your recording on Peeref.
Upload NowCreate your own webinar
Interested in hosting your own webinar? Check the schedule and propose your idea to the Peeref Content Team.
Create Now